Please use this identifier to cite or link to this item: http://localhost:8080/xmlui/handle/123456789/9680
Title: IMPROVING ALGORITHM FOR VEHICLE MODEL USING IMAGE PROCESSING
Authors: MOHANAD A. AL-ASKARI, IEHAB ABDULJABBAR KAMIL
Keywords: Image Processing
Convolutional Neural Networks (CNNs)
Deep Learning
Principal Component Analysis (PCA)
Automobile
Sensor
Issue Date: 1-Dec-2024
Publisher: ASWAN SCIENCE AND TECHNOLOGY BULLETIN (ASTB)
Abstract: The research will employ contemporary image processing with convolutional neural network technology to enhance automobile model recognition and categorisation. Image processing improves the accuracy and efficiency of car identification and categorization. Control of traffic and safety surveillance might benefit significantly from this technology. CNNs improve vehicle recognition accuracy and efficiency. It examines complex image processing techniques, including bilateral filtrating and directional diffusion. PCA, or principal component analysis, reduces the number of parameters in models with multiple dimensions. This is essential to minimising computational difficulty and limiting over-fitting while preserving system quality. This strategy improves model efficiency and accuracy by targeting the most critical data discrepancies. Monocular vision, along with infrared sensors, are essential for vehicle detection. The CNN algorithm, trained on two-dimensional images and three dimensional Bezier curves, reduces restoration errors and accurately recognizes automobile models. The results showed fewer mistakes, greater precision, recall, and F1 rating scores. In order to enhance car recognition and classification, further research is needed to expand databases and examine hybrid solutions.
URI: http://localhost:8080/xmlui/handle/123456789/9680
ISSN: 1110-0184
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